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 CellChangeTimes->{3.556616576809295*^9}]
}, Open  ]],

Cell["\<\
Shows that I1z and I2z are generated with opposite signs as the singlet order \
evolves after the chemical reaction\
\>", "Text",
 CellChangeTimes->{{3.55392898741066*^9, 3.553928987937652*^9}, {
  3.553929080272911*^9, 3.553929117024847*^9}}]
}, Open  ]],

Cell[CellGroupData[{

Cell["\<\
simulate spectra after reaction with parahydrogen in high field (PASADENA)\
\>", "Subsubtitle",
 CellChangeTimes->{{3.553928771548893*^9, 3.5539287744343767`*^9}, {
  3.553928825106421*^9, 3.553928829688403*^9}, {3.553928883369121*^9, 
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simulate spectrum after ALTADENA and a small flip angle pulse\
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